{"title":"基于改进型 FasterR-CNN 的铁路导轨绝缘体故障检测","authors":"Lingzhi Yi, Tengfei Dong, Yahui Wang, Haixiang She, Chuyang Yi, Guo Yu","doi":"10.2174/0122127976286140240222055507","DOIUrl":null,"url":null,"abstract":"\n\nThe railroad catenary insulator, which is a crucial component of the catenary\nsystem and is situated between the pillar and wrist arm, is crucial for electrical conductor isolation,\nelectrical equipment insulation, mechanical load bearing, anti-fouling, and anti-leakage. The\ncatenary insulators will experience tarnished flash, breakage, insulation strength deterioration, and\nother issues as a result of the long-term outside unfavorable working circumstances. The train electrical\nsystem's ability to operate normally is greatly hampered by these problems. Although there\nare many patents and articles related to insulator fault detection, the precision is not high enough.\nTherefore, it is crucial to improve the precision of catenary insulator fault detection.\n\n\n\nAn improved region-based convolutional neural networks (Faster R-CNN)-based fault\ndetection method for railway catenary insulators is proposed in response to the long detection time\nof the conventional railroad catenary insulator fault, the low precision of the catenary insulator\nfault detection for occlusion and truncation, the poor performance of multi-scale object detection,\nand the processing of class unbalance problem.\n\n\n\nThe Faster R-CNN is optimized from four perspectives: feature extraction, feature fusion,\ncandidate box screening, and loss function, in accordance with the properties of the catenary\ninsulator. First, to solve the problem of multi-scale catenary insulator fault detection, convolutional\nblock attention module (CBAM) and feature pyramid network (FPN) are used to fuse the deep feature\nand shallow features of the image. This results in a feature map with more critical semantic information\nand higher resolution. After that, the weighted non-maximum suppression (WNMS) algorithm\nimproved by distance-intersection over union (DIOU) and Gaussian weighting function is\nused instead of the traditional NMS algorithm, which effectively introduces the overlap of detection\nframes into the confidence level and makes full use of the effective information of the detection\nframes. Finally, the improved Focal loss is used as the classification loss, and the focusing parameter\nand the balance factor of the Focal Loss are adjusted dynamically to solve the problem of\nsample imbalance and difficult sample identification in the model better.\n\n\n\nThe effects of SSD, YOLOV3, traditional Faster R-CNN and improved Faster R-CNN\nmodels are tested on the contact network insulator fault detection dataset constructed in this paper,\nand the experimental results show that the improved Faster R-CNN has higher precision, recall,\nand mAP compared to the other detection models, which reach 94.31%, 96.68% and 95.22%, respectively.\n\n\n\nThe results of the experiments demonstrate that this method may successfully detect\nthe faults in different scale catenary insulators. It can effectively detect truncated, obscured faulty\ncatenary insulators. It has higher precision and recall and provides a reliable reference for maintaining\nfaulty insulators in railway catenary.\n","PeriodicalId":39169,"journal":{"name":"Recent Patents on Mechanical Engineering","volume":"135 27","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Railroad Catenary Insulator Fault Detection Based on Improved Faster\\nR-CNN\",\"authors\":\"Lingzhi Yi, Tengfei Dong, Yahui Wang, Haixiang She, Chuyang Yi, Guo Yu\",\"doi\":\"10.2174/0122127976286140240222055507\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"\\n\\nThe railroad catenary insulator, which is a crucial component of the catenary\\nsystem and is situated between the pillar and wrist arm, is crucial for electrical conductor isolation,\\nelectrical equipment insulation, mechanical load bearing, anti-fouling, and anti-leakage. The\\ncatenary insulators will experience tarnished flash, breakage, insulation strength deterioration, and\\nother issues as a result of the long-term outside unfavorable working circumstances. The train electrical\\nsystem's ability to operate normally is greatly hampered by these problems. Although there\\nare many patents and articles related to insulator fault detection, the precision is not high enough.\\nTherefore, it is crucial to improve the precision of catenary insulator fault detection.\\n\\n\\n\\nAn improved region-based convolutional neural networks (Faster R-CNN)-based fault\\ndetection method for railway catenary insulators is proposed in response to the long detection time\\nof the conventional railroad catenary insulator fault, the low precision of the catenary insulator\\nfault detection for occlusion and truncation, the poor performance of multi-scale object detection,\\nand the processing of class unbalance problem.\\n\\n\\n\\nThe Faster R-CNN is optimized from four perspectives: feature extraction, feature fusion,\\ncandidate box screening, and loss function, in accordance with the properties of the catenary\\ninsulator. First, to solve the problem of multi-scale catenary insulator fault detection, convolutional\\nblock attention module (CBAM) and feature pyramid network (FPN) are used to fuse the deep feature\\nand shallow features of the image. This results in a feature map with more critical semantic information\\nand higher resolution. After that, the weighted non-maximum suppression (WNMS) algorithm\\nimproved by distance-intersection over union (DIOU) and Gaussian weighting function is\\nused instead of the traditional NMS algorithm, which effectively introduces the overlap of detection\\nframes into the confidence level and makes full use of the effective information of the detection\\nframes. Finally, the improved Focal loss is used as the classification loss, and the focusing parameter\\nand the balance factor of the Focal Loss are adjusted dynamically to solve the problem of\\nsample imbalance and difficult sample identification in the model better.\\n\\n\\n\\nThe effects of SSD, YOLOV3, traditional Faster R-CNN and improved Faster R-CNN\\nmodels are tested on the contact network insulator fault detection dataset constructed in this paper,\\nand the experimental results show that the improved Faster R-CNN has higher precision, recall,\\nand mAP compared to the other detection models, which reach 94.31%, 96.68% and 95.22%, respectively.\\n\\n\\n\\nThe results of the experiments demonstrate that this method may successfully detect\\nthe faults in different scale catenary insulators. It can effectively detect truncated, obscured faulty\\ncatenary insulators. It has higher precision and recall and provides a reliable reference for maintaining\\nfaulty insulators in railway catenary.\\n\",\"PeriodicalId\":39169,\"journal\":{\"name\":\"Recent Patents on Mechanical Engineering\",\"volume\":\"135 27\",\"pages\":\"\"},\"PeriodicalIF\":0.0000,\"publicationDate\":\"2024-03-11\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Recent Patents on Mechanical Engineering\",\"FirstCategoryId\":\"1085\",\"ListUrlMain\":\"https://doi.org/10.2174/0122127976286140240222055507\",\"RegionNum\":0,\"RegionCategory\":null,\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q4\",\"JCRName\":\"Engineering\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Recent Patents on Mechanical Engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.2174/0122127976286140240222055507","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Engineering","Score":null,"Total":0}
引用次数: 0
摘要
铁路接触网绝缘子是接触网系统的重要组成部分,位于支柱和腕臂之间,对导体隔离、电气设备绝缘、机械承载、防污、防渗漏等起着至关重要的作用。由于长期处于外界不利的工作环境中,导线绝缘子会出现污闪、断裂、绝缘强度下降等问题。这些问题极大地影响了列车电气系统的正常运行。因此,提高导体绝缘子故障检测的精度至关重要。针对传统铁路接触网绝缘子故障检测时间长、接触网绝缘子故障检测遮挡和截断精度低、多尺度物体检测性能差以及类不平衡问题的处理等问题,提出了一种改进的基于区域卷积神经网络(Faster R-CNN)的铁路接触网绝缘子故障检测方法。根据导线绝缘子的特性,从特征提取、特征融合、候选盒筛选和损失函数四个方面对Faster R-CNN进行了优化。首先,为解决多尺度导体绝缘子故障检测问题,利用卷积块注意模块(CBAM)和特征金字塔网络(FPN)对图像的深层特征和浅层特征进行融合。这将产生一个具有更多关键语义信息和更高分辨率的特征图。然后,使用经距离交集联合(DIOU)和高斯加权函数改进的加权非最大抑制(WNMS)算法代替传统的 NMS 算法,该算法有效地将检测帧的重叠引入置信度,充分利用了检测帧的有效信息。最后,采用改进的 Focal loss 作为分类损失,并动态调整 Focal loss 的聚焦参数和平衡因子,较好地解决了模型中样本不平衡和样本识别困难的问题。在本文构建的接触网绝缘子故障检测数据集上测试了SSD、YOLOV3、传统的Faster R-CNN和改进的Faster R-CNN模型的效果,实验结果表明,改进的Faster R-CNN与其他检测模型相比具有更高的精度、召回率和mAP,分别达到94.31%、96.68%和95.22%。实验结果表明,该方法可以成功检测出不同尺度导体绝缘子的故障,并能有效检测出截断的、模糊的故障导体绝缘子。该方法具有较高的精确度和召回率,为维护铁路接触网故障绝缘子提供了可靠的参考。
Railroad Catenary Insulator Fault Detection Based on Improved Faster
R-CNN
The railroad catenary insulator, which is a crucial component of the catenary
system and is situated between the pillar and wrist arm, is crucial for electrical conductor isolation,
electrical equipment insulation, mechanical load bearing, anti-fouling, and anti-leakage. The
catenary insulators will experience tarnished flash, breakage, insulation strength deterioration, and
other issues as a result of the long-term outside unfavorable working circumstances. The train electrical
system's ability to operate normally is greatly hampered by these problems. Although there
are many patents and articles related to insulator fault detection, the precision is not high enough.
Therefore, it is crucial to improve the precision of catenary insulator fault detection.
An improved region-based convolutional neural networks (Faster R-CNN)-based fault
detection method for railway catenary insulators is proposed in response to the long detection time
of the conventional railroad catenary insulator fault, the low precision of the catenary insulator
fault detection for occlusion and truncation, the poor performance of multi-scale object detection,
and the processing of class unbalance problem.
The Faster R-CNN is optimized from four perspectives: feature extraction, feature fusion,
candidate box screening, and loss function, in accordance with the properties of the catenary
insulator. First, to solve the problem of multi-scale catenary insulator fault detection, convolutional
block attention module (CBAM) and feature pyramid network (FPN) are used to fuse the deep feature
and shallow features of the image. This results in a feature map with more critical semantic information
and higher resolution. After that, the weighted non-maximum suppression (WNMS) algorithm
improved by distance-intersection over union (DIOU) and Gaussian weighting function is
used instead of the traditional NMS algorithm, which effectively introduces the overlap of detection
frames into the confidence level and makes full use of the effective information of the detection
frames. Finally, the improved Focal loss is used as the classification loss, and the focusing parameter
and the balance factor of the Focal Loss are adjusted dynamically to solve the problem of
sample imbalance and difficult sample identification in the model better.
The effects of SSD, YOLOV3, traditional Faster R-CNN and improved Faster R-CNN
models are tested on the contact network insulator fault detection dataset constructed in this paper,
and the experimental results show that the improved Faster R-CNN has higher precision, recall,
and mAP compared to the other detection models, which reach 94.31%, 96.68% and 95.22%, respectively.
The results of the experiments demonstrate that this method may successfully detect
the faults in different scale catenary insulators. It can effectively detect truncated, obscured faulty
catenary insulators. It has higher precision and recall and provides a reliable reference for maintaining
faulty insulators in railway catenary.